PENERAPAN DATA MINING MENGGUNAKAN HIERARCHICAL K-MEANS BERDASARKAN MODEL RFM

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Andreas Lie
Teny Handhayani

Abstract

E-commerce has become an inseparable part of the global retail work environment, where this has an impact by presenting new business competition so that companies are required to determine strategies to be able to gain profits. 


The purpose of this study is to produce customer segmentation using a combination of Hierachical K-Means Clustering algorithms on online retail transaction data that is transformed into Recency, Frequency, and Monetary (RFM) forms and obtain grouping results that have a high degree of similarity by evaluating clusters that are formed using Silhouette analysis. 


The results of the study stated that the validation test using the Silhouette Coefficient of the combination of the Hierachical K-Means Clustering algorithm was superior to the K-Means algorithm with the optimal coefficient value of the combination of the K-Means algorithm and the Ward method of Hierachical Clustering, namely 0.54027 with the number of k = 4 while the Hierachical Clustering method was K-Means is only 0.44060 with a total of k = 3. Clustering produces two groups of customers, namely Uncertain and Best Customers according to the customer value matrix.

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References

Siagian, Romadansyah., Sirait, Pahala., dan Halima, Arwin. 2021, “E-Commerce Customer Segmentation Using K-Means Algorithm and Length, Recency, Frequency, Monetary Model”, Journal of Informatics and Telecommunication Engineering, Vol. 5, No, 1.

Marisa, Fitri., Ahmad, Sarifah Shakinah Syed., Yusof, Zeratul Izzah Mohd., Fachrudin., dan Aziz, Tubagus Mohammad Akhriza. 2019, “Segmentation Model of Customer Lifetime Value in Small an Medium Enterprise (SMEs) using K-Means Clustering and LRFM Model “, International Journal of Integrated Engineering, Vol. 11, No. 3.

Putra, Randi Rian dan Wadisman Cendra. 2018, “IMPLEMENTASI DATA MINING PEMILIHAN PELANGGAN POTENSIAL MENGGUNAKAN ALGORITMA K-MEANS,” Journal of Information Technology and Computer Science (INTECOMS), Vol. 1, No. 1.

Pramudiansyah, Apip dan Munte, Hamonangan. 2021 , “Segmentasi Pelanggan Menggunakan Algoritma K-Means Berdasarkan Model Recency Frequency Monetary”, Jurnal Ilmiah Ilmu Komputer Fakultas Ilmu Komputer Universitas AL – Assyariah Mandar, Vol. 7, No. 2.

Cahaya, Leonard., Hiryanto, Lely., and Handhayani, Teny., 2017, “Student Graduation Time Prediction Using Intelligent K-Medoids Algorithm”, 2017 3rd International Conference on Science in Information Technology (ICSITech).

Sari, Dilla Permata., Utami, Tiani Wahyu., dan Nur, Indah Manfaati. 2021, Robust Geographically Weighted Regression Dengan Metode Least Absolute Deviation Pada Kasus Penyebaran Covid 19 Di Indonesia. http://repository.unimus.ac.id/id/eprint/5147, Tanggal akses 27 September 2022

Muhidin, Asep. 2017, “Analisa Metode Hierarchical Clustering dan K-Mean dengan Model LRFMP pada Segmentasi Pelanggan”, JURNAL TEKNOLOGI PELITA BANGSA, Vol. 7, No. 1.

Rizaldi, Rezki., Kurniawati, Arik., dan Angkoso, Cucun Very. 2018, “Implementasi Metode Euclidean Distance Untuk Rekomendasi Ukuran Pakaian Pada Aplikasi Ruang Ganti Virtual”, Jurnal Teknologi Informasi dan Ilmu Komputer (JTIIK), Vol. 5, No. 2.

Chen, Bernard., Tai, Phang C., Harrison, R., and Pan, Yi. 2005, “Novel hybrid hierarchical-K- means clustering method (HK-means) for microarray analysis”, 2005 IEEE Computational Systems Bioinformatics Conference - Workshops (CSBW'05).

Paembonan, Solmin dan Abduh, Hisma. 2021, “Penerapan Metode Silhouette Coeficient Untuk Evaluasi Clutering Obat”, Jurnal Ilmiah Ilmu – Ilmu Teknik , Vol. 6, No. 2.

Claudio Marcus. 1998, “A practical yet meaningful approach to customer segmentation”, Journal of Consumer Marketing, Vol. 15, No. 5.